Title :
Online Learning in BitTorrent Systems
Author :
Izhak-Ratzin, Rafit ; Park, Hyunggon ; Van der Schaar, Mihaela
Author_Institution :
Palo Alto Networks, Sunnyvale, CA, USA
Abstract :
We propose a BitTorrent-like protocol based on an online learning (reinforcement learning) mechanism, which can replace the peer selection mechanisms in the regular BitTorrent protocol. We model the peers´ interactions in the BitTorrent-like network as a repeated stochastic game, where the strategic behaviors of the peers are explicitly considered. A peer that applies the reinforcement learning (RL)-based mechanism uses the observations on the associated peers´ statistical reciprocal behaviors to determine its best responses and estimate the corresponding impact on its expected utility. The policy determines the peer´s resource reciprocations such that the peer can maximize its long-term performance. We have implemented the proposed mechanism and incorporated it into an existing BitTorrent client. Our experiments performed on a controlled Planetlab testbed confirm that the proposed protocol 1) promotes fairness and provides incentives to contributed resources, i.e., high capacity peers improve their download completion time by up to 33 percent, 2) improves the system stability and robustness, i.e., reduces the peer selection fluctuations by 57 percent, and (3) discourages free-riding, i.e., peers reduce their uploads to free-riders by 64 percent as compared to the regular BitTorrent protocol.
Keywords :
game theory; incentive schemes; peer-to-peer computing; protocols; stochastic processes; BitTorrent-like protocol; Planetlab testbed; download completion time improvement; incentive; long-term performance; online learning; peer selection mechanism; reinforcement learning mechanism; repeated stochastic game; resource reciprocation; statistical reciprocal behavior; strategic behavior; system stability; Games; Learning systems; Peer to peer computing; Protocols; Resource management; BitTorrent; Peer-to-peer (P2P); foresighted resource reciprocation strategy; reinforcement learning;
Journal_Title :
Parallel and Distributed Systems, IEEE Transactions on
DOI :
10.1109/TPDS.2012.90